Exact Filtering for Partially Observed Continuous Time Models
- 15 July 2004
- journal article
- Published by Oxford University Press (OUP) in Journal of the Royal Statistical Society Series B: Statistical Methodology
- Vol. 66 (3) , 771-789
- https://doi.org/10.1111/j.1467-9868.2004.05561.x
Abstract
Summary: The forward–backward algorithm is an exact filtering algorithm which can efficiently calculate likelihoods, and which can be used to simulate from posterior distributions. Using a simple result which relates gamma random variables with different rates, we show how the forward–backward algorithm can be used to calculate the distribution of a sum of gamma random variables, and to simulate from their joint distribution given their sum. One application is to calculating the density of the time of a specific event in a Markov process, as this time is the sum of exponentially distributed interevent times. This enables us to apply the forward–backward algorithm to a range of new problems. We demonstrate our method on three problems: calculating likelihoods and simulating allele frequencies under a non-neutral population genetic model, analysing a stochastic epidemic model and simulating speciation times in phylogenetics.This publication has 20 references indexed in Scilit:
- Bayesian Methods for Hidden Markov ModelsJournal of the American Statistical Association, 2002
- Perfect Simulation from Population Genetic Models with SelectionTheoretical Population Biology, 2001
- Markovian Structures in Biological Sequence AlignmentsJournal of the American Statistical Association, 1999
- Analytic Convergence Rates and Parameterization Issues for the Gibbs Sampler Applied to State Space ModelsJournal of Time Series Analysis, 1999
- Bayesian Inference for Partially Observed Stochastic EpidemicsJournal of the Royal Statistical Society Series A: Statistics in Society, 1999
- Statistical inference for a multitype epidemic modelJournal of Statistical Planning and Inference, 1998
- Robustness of the Ewens sampling formulaJournal of Applied Probability, 1995
- Hidden Markov Models for Speech RecognitionTechnometrics, 1991
- Evolutionary trees from DNA sequences: A maximum likelihood approachJournal of Molecular Evolution, 1981
- A Maximization Technique Occurring in the Statistical Analysis of Probabilistic Functions of Markov ChainsThe Annals of Mathematical Statistics, 1970